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Blood vessel extraction from retinal images using Complex Wavelet Transform and Complex-Valued Artificial Neural Network

机译:使用复小波变换和复值人工神经网络从视网膜图像中提取血管

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摘要

Retinal imaging in ophthalmology plays an important role for the diagnosis of diabetes, cardiovascular disease, etc. In retina images, changes of blood vessels can help the expert to detection of diseases. Manually extraction of blood vessels from retinal images is usually difficult process due to depending on the experience of physician, back-ground artifacts, different acquisition process. Therefore, the aim of this study is to purpose a novel method for automatic blood vessel extraction from retinal image. This study presents a combined structure. This structure is realized with two cascade stages: feature extraction with 4th level Complex Wavelet Transform (CWT) and Complex-Valued Artificial Neural Networks (CVANN) for the blood vessels segmentation. To check the validation of proposed method, public DRIVE database is used. Result of this study has a higher accuracy (98.56 %) than previously studies in the literature.
机译:眼科的视网膜成像在糖尿病,心血管疾病等的诊断中起着重要的作用。在视网膜图像中,血管的变化可以帮助专家检测疾病。从视网膜图像中手动提取血管通常是困难的过程,这取决于医生的经验,背景伪像,不同的采集过程。因此,本研究的目的是针对从视网膜图像自动提取血管的新方法。这项研究提出了一个组合的结构。该结构通过两个级联阶段实现:利用第4级复小波变换(CWT)和复杂值人工神经网络(CVANN)进行特征提取以进行血管分割。为了检查所提出方法的有效性,使用了公共DRIVE数据库。这项研究的结果比以前的文献有更高的准确性(98.56%)。

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